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基于紫外诱导荧光激发发射矩阵和深度卷积神经网络的油污染物识别。

Oil pollutant identification based on excitation-emission matrix of UV-induced fluorescence and deep convolutional neural network.

机构信息

Navigation College, Dalian Maritime University, Dalian, China.

出版信息

Environ Sci Pollut Res Int. 2022 Sep;29(45):68152-68160. doi: 10.1007/s11356-022-20392-x. Epub 2022 May 10.

Abstract

Identifying the types of oil pollutants in a spill event can help determine the source of spill and formulate the plan of emergency responses. Excitation-emission matrix (EEM), which is also called three-dimensional fluorometric spectra, includes abundant spectral information in the domain of excitation wavelength and can be potentially applied to identify oil types. UV-induced fluorometric experiments were conducted in this study to collect EEMs for five types of oil that are commonly used in maritime transportation. A deep convolutional neural network (CNN) model for oil types identification was built based on the classic VGG-16 model. According to the identification results, the model was able to provide a reasonable classification on the five types of oil used in the experiments. Additionally, a biased classification result was observed in the experiment: the model was able to provide the most accurate classification on 0W40 lubricant but encounters difficulty distinguishing between - 10# diesel and 92# gasoline. The potential reasons for this result and the approaches to improve the model were also discussed.

摘要

识别溢油事件中的油类污染物类型有助于确定溢油源,并制定应急预案。激发-发射矩阵(EEM),也称为三维荧光光谱,在激发波长域包含丰富的光谱信息,可用于识别油类。本研究进行了紫外诱导荧光实验,以收集五种在海上运输中常用的油类的 EEM。基于经典的 VGG-16 模型,建立了用于油类识别的深度卷积神经网络(CNN)模型。根据识别结果,该模型能够对实验中使用的五种油类进行合理分类。此外,实验中观察到一个有偏差的分类结果:该模型能够对 0W40 润滑剂提供最准确的分类,但在区分-10#柴油和 92#汽油方面遇到困难。还讨论了该结果的潜在原因以及改进模型的方法。

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